FocA:一种深度学习工具,用于在自动化细胞分析管道中进行可靠的、近实时的成像焦点分析

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2023-10-01 DOI:10.1016/j.slasd.2023.08.004
Jeff Winchell, Gabriel Comolet, Geoff Buckley-Herd, Dillion Hutson, Neeloy Bose, Daniel Paull, Bianca Migliori
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引用次数: 0

摘要

在细胞分析和细胞培养中越来越多地使用自动化技术,为提高成像分析的规模和吞吐量提供了重要的机会,但要做到这一点,可靠的数据质量和一致性至关重要。因此,实现自动化的全部潜力将需要设计跨越整个工作流程的健壮的分析管道。在这里,我们介绍了FocA,这是一种深度学习工具,可以近乎实时地识别在全自动细胞生物学研究平台NYSCF全球干细胞阵列®上生成的聚焦和失焦图像。该工具在小块下采样图像上进行训练,以在不影响准确性的情况下最大限度地提高计算效率,并进行优化,以确保不存储低质量图像并在下游分析中使用。该工具自动生成平衡和最大程度多样化的训练集,以避免偏差。所得到的模型在每个96孔板不到4秒的时间内正确识别100%的失焦图像和98%的对焦图像,并且即使在严重下采样的数据中(比原始分辨率小30倍)也能实现这一结果。将该工具集成到自动化工作流中可以最大限度地减少对人工验证以及收集和使用低质量数据的需求。因此,FocA提供了一种解决方案,以确保可靠的图像数据卫生,并使用最少的计算资源提高自动化成像工作流程的效率。
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FocA: A deep learning tool for reliable, near-real-time imaging focus analysis in automated cell assay pipelines

The increasing use of automation in cellular assays and cell culture presents significant opportunities to enhance the scale and throughput of imaging assays, but to do so, reliable data quality and consistency are critical. Realizing the full potential of automation will thus require the design of robust analysis pipelines that span the entire workflow in question. Here we present FocA, a deep learning tool that, in near real-time, identifies in-focus and out-of-focus images generated on a fully automated cell biology research platform, the NYSCF Global Stem Cell Array®. The tool is trained on small patches of downsampled images to maximize computational efficiency without compromising accuracy, and optimized to make sure no sub-quality images are stored and used in downstream analyses. The tool automatically generates balanced and maximally diverse training sets to avoid bias. The resulting model correctly identifies 100% of out-of-focus and 98% of in-focus images in under 4 s per 96-well plate, and achieves this result even in heavily downsampled data (∼30 times smaller than native resolution). Integrating the tool into automated workflows minimizes the need for human verification as well as the collection and usage of low-quality data. FocA thus offers a solution to ensure reliable image data hygiene and improve the efficiency of automated imaging workflows using minimal computational resources.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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